In this paper, a new artificial neural network model is proposed for visual object recognition, in which the bottom-up, sensory-driven pathway and top-down, expectation-driven pathway are fused in information processing and their corresponding weights are learned based on the fused neuron activities. During the supervised learning process, the target labels are applied to update the bottom-up synaptic weights of the neural network. Meanwhile, the hypotheses generated by the bottom-up pathway produce expectations on sensory inputs through the top-down pathway. The expectations are constrained by the real data from the sensory inputs, which can be used to update the top-down synaptic weights accordingly. To further improve the visual object r...
Human brain is an information processing system, which is perfectly designed to deal with complex vi...
Research on psychophysics, neurophysiology, and functional imaging shows particular representation o...
The aim of this doctoral research is to advance understanding of how the primate brain learns to pro...
In this paper, a new artificial neural network model is proposed for visual object recognition, in w...
Zheng Y, Meng Y, Jin Y. Fusing bottom-up and top-down pathways in neural networks for visual object ...
We present a system for object recognition that is largely inspired by physiologically identified pr...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We present a large-scale neuromorphic model based on integrate-and-fire (IF) neurons that analyses o...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
This thesis deals with biologically-inspired interactive neural networks for the task of object reco...
As Rubin’s famous vase demonstrates, our visual perception tends to assign luminance contrast border...
The classical computer vision methods can only weakly emulate some of the multi-level parallelisms i...
Human brain is an information processing system, which is perfectly designed to deal with complex vi...
Research on psychophysics, neurophysiology, and functional imaging shows particular representation o...
The aim of this doctoral research is to advance understanding of how the primate brain learns to pro...
In this paper, a new artificial neural network model is proposed for visual object recognition, in w...
Zheng Y, Meng Y, Jin Y. Fusing bottom-up and top-down pathways in neural networks for visual object ...
We present a system for object recognition that is largely inspired by physiologically identified pr...
The ventral stream of the human visual system is credited for processing object recognition tasks. T...
We present a neural-based learning system for object recognition in still gray-scale images, The sys...
Electrophysiological studies have shown that mammalian primary visual cortex are selective for the o...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
We present a large-scale neuromorphic model based on integrate-and-fire (IF) neurons that analyses o...
Humans can effectively and swiftly recognize objects in complex natural scenes. This outstanding abi...
This thesis deals with biologically-inspired interactive neural networks for the task of object reco...
As Rubin’s famous vase demonstrates, our visual perception tends to assign luminance contrast border...
The classical computer vision methods can only weakly emulate some of the multi-level parallelisms i...
Human brain is an information processing system, which is perfectly designed to deal with complex vi...
Research on psychophysics, neurophysiology, and functional imaging shows particular representation o...
The aim of this doctoral research is to advance understanding of how the primate brain learns to pro...